Wednesday, July 1, 2026

Balancing Human Values and AI When Concentrated Market Leadership Will Happen

In principle, it is hard to disagree with Pope Leo XIV, who argues in Magnifica Humanitas that humans values and artificial intelligence must be balanced.


Some critics will complain about AI ownership concentration and outsized market power, to protect human values.


But markets generally develop with a few leaders, whether we like it or not. 


So we still are left with the thorny task of figuring out how to do all that balancing.


Consider similar concerns about the internet. In the late 1980s and early 1990s, many academics, researchers, and early users believed the internet should remain a non-commercial, collaborative environment.


After all, the early internet was a subsidized, academic network encouraging sharing and open exchange. 


The early internet (ARPANET, NSFNET, and connected university networks) was funded almost entirely by governments and research institutions.


This culture produced enduring norms:

  • open protocols

  • open publication

  • free exchange of software

  • collaborative development.


The turning point came after restrictions on commercial traffic over the NSFNET were lifted in the early 1990s:

  • private Internet Service Providers appeared

  • domain registration expanded

  • browsers made the web accessible

  • online retail became feasible

  • venture capital entered the industry.


So some worried about:

  • commercialization overwhelming academic culture

  • advertising degrading user experience

  • unequal access

  • concentration of economic power.


Concerns about concentration of power will resemble earlier concerns about the internet. 


But the emphasis on “free” might not happen. 


State-of-the-art AI models have substantial ongoing inference costs, so the marginal cost of serving each additional user is not close to zero. And near-zero marginal costs were the enabler for “free” internet services and apps. 


As a result, "everything should be free" is less economically sustainable for AI than it was for web content. 


On the other hand, concerns about concentration of power have already emerged. But it’s a balance. Without the prospect of profit, much less capital would have flowed into software and internet infrastructure, economists will argue.


And it is likely the rule of three will emerge in various segments of the overall AI market, as is true for capital-intensive markets. 


 

source: Mercatus


The rule of three is the idea that in many competitive industries, market structure tends to settle into a small number of dominant firms because scale, fixed costs, and network effects push markets toward concentration rather than endless fragmentation. 


That often leads to a winner takes all market structure.  


In AI, that logic can show up at multiple layers: a few chipmakers can dominate hardware, a few foundation-model providers can dominate models, a few cloud/enterprise ecosystems can dominate platforms, and a few application software vendors can dominate key use cases:

  • Hardware. AI chips and the infrastructure around them are capital-intensive, with high fixed costs and strong scale advantages, which makes concentration likely.

  • Models. Frontier model development also has steep training costs, data advantages, and distribution effects, so a small set of model leaders can emerge even if many models exist in the long tail.

  • Platforms. Cloud and AI distribution layers can become winner-take-most because users gravitate to ecosystems with the best tooling, trust, integrations, and developer gravity.

  • Software. Application layers are often more fragmented than infrastructure, but in categories with strong workflow lock-in or standards, the same top-three pattern can appear.

 

Not all Industries feature the rule of three pattern. That can occur when:

  •  they have low fixed costs

  • weak scale economies

  • highly local demand

  • strong differentiation. 


Examples include many local services, artisanal goods, custom professional services, and some labor-intensive niches where geography and relationships matter more than national scale. Sectors with rapid product churn and low switching costs can also resist stable three-firm dominance because new entrants can displace incumbents quickly.


It’s hard to see how the various parts of the AI market can avoid developing along a rule of three pattern. 


And that means some critics will be severely disappointed. 


It's Hard to be a Contrarian When "Fear" and "Greed" Seem Balanced

“Be fearful when others are greedy, and greedy when others are fearful,” fabled investor Warren Buffett says. It’s a hard thing to do. 


If one expects “higher for longer” inflation, for example, some experts might suggest energy equities as a place to be.


source:  Leo Nelissen, Seeking Alpha 


Maybe not this time, analysts at J.P. Morgan have suggested since about April of this year. The possible concern is that investors might not actually be “fearful” about energy assets at the moment. 


Sector assets rose 36 percent in the first quarter and another 10 percent since the Iran conflict began. So there is a valuation angle to be considered. 


And some might not believe inflation will continue to be an issue that outweighs other concerns, from the state of the economy in general to a possible artificial intelligence bust. 


And though market volatility spiked last spring, it has come back down, by late June. 


source: Yahoo 


The VIX (Cboe Volatility Index) is the literal definition of the original "fear gauge" in financial markets. It operates by measuring the market's expectation of future volatility, which heavily spikes when investors are nervous.


The VIX benchmarks suggest a “normal” amount of market fear:

  • Below 15: Signals a calm, complacent market where investors are generally relaxed.

  • 15 to 25: Represents normal market jitters or standard volatility.

  • Above 25-30: Indicates heightened investor concern, panic, or market turbulence.


The point is, to invest in a contrarian manner requires a determination of where market sentiment is positioned. 


Right now, at least where the traditional advice about “where to invest” for inflation protection is concerned, it is not entirely clear where the balance between “greed” and “fear” presently sits. 


A contrarian move requires understanding when one or the other is predominant. And, right now, it doesn’t seem clear that either is predominating. 


Tuesday, June 30, 2026

GEO is Different from SEO

Generative Engine Optimization (GEO) arguably is quite different from search engine optimization (SEO).  


Beyond the obvious differences that SEO aims to rank in search results, while GEO aims to be cited or surfaced inside AI-generated answers, it is harder to optimize across the most-used generative artificial intelligence models (ChatGPT, Perplexity, Google AI Overviews and Claude)


The reason is that each of those models uses a different philosophy, some note. Optimizing for one platform can mean losing the other three, on the exact same piece of content. 


Some note that the engines differ in how much they rely on live retrieval versus internal model behavior, and in how explicitly they surface sources. 


Perplexity is the most retrieval-forward and citation-first; ChatGPT, Gemini, and Claude are more general-purpose LLMs that may use different mixes of training data, tool retrieval, and internal reasoning before producing an answer, according to Fiveblocks.  


Dimension

SEO

GEO

Primary goal

Rank higher in traditional search results and earn clicks. stridec+1

Get cited, referenced, or summarized in AI-generated answers. 

Where visibility appears

Search engine results pages. writesonic

AI overviews, chat responses, and generative summaries.

Main success metrics

Rankings, organic traffic, click-through rate, conversions.

Citation frequency, brand mentions, citation context, AI-attributed referrals. stridec

Content style

Can succeed with broader page-level optimization and strong topical coverage.

Benefits from answer-shaped passages that are easy for AI to extract and synthesize. stridec

Technical signals

Crawlability, speed, mobile-friendliness, indexing, schema. envisionitagency

Same basics, but schema, entity clarity, and machine-readable structure matter even more. 

Authority signals

Backlinks, relevance, trust, topical authority. 

Expert authorship, corroboration, entity signals, and source authority that AI systems can cite. stridec

User experience

User searches, scans results, clicks a site. writesonic

User gets an answer directly inside the AI interface, often without clicking. writesonic

“Data freshness”

Generally slower-moving rankings. stridec

More volatile because AI citation behavior can shift as retrieval systems change. stridec


Writesonic illustrates the differences as well. GEO is not about click-through rates. Instead, what matters are reference rates: how often a brand or content is cited or used as a source in model-generated answers.


Element

SEO

GEO

Primary goal

Rank higher in traditional search results (Google, Bing)

Get cited or referenced inside AI-generated answers (ChatGPT, Gemini, Perplexity)

Where visibility happens

Search engine results pages (SERPs)

AI summaries, conversational answers, and generative responses

Core success metric

Rankings, clicks, organic traffic, conversions

AI citations, brand mentions, presence in AI conversations

Main discovery model

Users click links from ranked results

Users consume synthesized answers without clicking

How authority is evaluated

Backlinks, domain authority, engagement metrics

Entity recognition, consistency, clarity, and cross-source mentions

Role of backlinks

Critical ranking signal

Helpful but not required; unlinked mentions still matter

Importance of entities

Indirect (via links and topical relevance)

Central; AI engines rely heavily on explicit entity identification

Content optimization focus

Keywords, search intent, technical SEO

Explicit facts, clear attribution, entity-rich writing

Keyword strategy

Target keywords with measurable search volume

Optimize for conversational prompts and intent clusters

Content structure

Improves crawlability and rankings

Essential for AI parsing and accurate citation

Off-site signals

Mostly backlinks and referring domains

Mentions across forums, reviews, UGC, news, and third-party sites

Control over sources

Primarily owned assets (your website)

Owned + unowned sources across the entire web

User journey impact

Often mid-to-bottom funnel (click → convert)

Top-of-funnel discovery and brand trust building

ROI timeline

Direct and measurable

Long-term, compounding brand visibility

Risk of misrepresentation

Lower (users see your page directly)

Higher; AI may summarize or misinterpret third-party content

Relationship to each other

Foundation for visibility

Extension of SEO for AI-driven discovery

source: Writesonic 


The practical implications are that each of the engines will provide different sorts of answers, with differing degrees of explicit documentation on sources used. Claude, for example, seems more cautious and less explicit about use of sources. 


I find Gemini and Perplexity much more helpful in terms of documenting sources used to provide an answer. 


Engine

Source transparency

Citation behavior

What you usually see

ChatGPT

Moderate to variable, depending on whether web browsing or connected tools are enabled. 

Citations may appear with browsing, but are often absent in standard responses.

A synthesized answer that may not show exactly which source influenced each claim. 

Gemini

Moderate, with stronger grounding in Google’s information ecosystem than explicit source display. fiveblocks

Citations can appear in some modes, but the answer often reads as integrated synthesis rather than source-by-source exposition. fiveblocks

A polished response with implicit grounding in indexed or knowledge-graph-style material. fiveblocks

Claude

Moderate to high in caution, but not usually citation-heavy by default. fiveblocks

Tends to qualify uncertainty and avoid overstating certainty; citations are not typically the core user-facing feature. fiveblocks

A careful narrative answer that signals confidence limits more than it exposes sources. fiveblocks

Perplexity

High; source use is usually visible and central to the product experience. 

Citations are typically inline and prominent, making it easier to inspect the evidence behind each answer. 

A response built around retrieved sources, with links or references attached to claims. 


Balancing Human Values and AI When Concentrated Market Leadership Will Happen

In principle, it is hard to disagree with Pope Leo XIV, who argues in Magnifica Humanitas that humans values and artificial intelligence mu...